Improving Insights by Utilizing Causal Inference Methods
Offered By: Data Science Festival via YouTube
Course Description
Overview
Explore causal inference methods for enhancing data science model insights in this 40-minute talk from the Data Science Festival. Delve into the challenges of understanding incremental improvements without experimentation, and learn how traditional exploratory data analysis techniques can lead to biased conclusions. Discover how causal inference methods can de-bias data and approximate the value of incremental improvements. Gain insights into the use and democratization of propensity score matching and regression discontinuity for accelerating insights. Examine the challenges related to omitted variable bias and sensitivity analysis, equipping yourself with advanced techniques to improve your data science models and decision-making processes.
Syllabus
Improving Insights by Utilizing Causal Inference Methods (Data Science Festival)
Taught by
Data Science Festival
Related Courses
Data Science in Real LifeJohns Hopkins University via Coursera A Crash Course in Causality: Inferring Causal Effects from Observational Data
University of Pennsylvania via Coursera Causal Diagrams: Draw Your Assumptions Before Your Conclusions
Harvard University via edX Causal Inference
Columbia University via Coursera Causal Inference 2
Columbia University via Coursera